Diff2SP is a diffusion-based generative model that embeds stochastic optimization objectives into scenario generation and supplies regret bounds plus sample-complexity guarantees relative to GANs.
Global-Decision-Focused Neural ODEs for Proactive Grid Resilience Management
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abstract
Extreme hazard events such as wildfires and hurricanes increasingly threaten power systems, causing widespread outages and disrupting critical services. Recently, predict-then-optimize approaches have gained traction in grid operations, where system functionality forecasts are first generated and then used as inputs for downstream decision-making. However, this two-stage method often results in a misalignment between prediction and optimization objectives, leading to suboptimal resource allocation. To address this, we propose predict-all-then-optimize-globally (PATOG), a framework that integrates outage prediction with globally optimized interventions. At its core, our global-decision-focused (GDF) neural ODE model captures outage dynamics while optimizing resilience strategies in a decision-aware manner. Unlike conventional methods, our approach ensures spatially and temporally coherent decision-making, improving both predictive accuracy and operational efficiency. Experiments on synthetic and real-world datasets demonstrate significant improvements in outage prediction consistency and grid resilience.
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stat.CO 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Diff2SP: Diffusion Models for Correlated Scenario Generation in Stochastic Programming
Diff2SP is a diffusion-based generative model that embeds stochastic optimization objectives into scenario generation and supplies regret bounds plus sample-complexity guarantees relative to GANs.